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Zero-inflated modelling for characterizing coverage errors of extracts from the US Census Bureau's Master Address File

机译:零膨胀模型,用于表征美国人口普查局主地址文件摘录的覆盖率误差

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摘要

To meet the strategic goals and objectives for the 2020 census, the US Census Bureau must make fundamental changes to the design, implementation and management of the decennial census. The changes must build on the successes and address the challenges of the previous censuses. Of particular interest is to gauge the on-going quality of the census frames. We address this topic by discussing a set of statistical models for the Master Address File that will produce estimates of coverage error at levels of geography down to the block level. The distributions of added and deleted housing units in a block are used to characterize the undercoverage and overcoverage respectively. The data used are from the 2010 address canvassing operation. As will be shown, these distributions are highly right skewed with a very large proportion of 0 counts. Hence, we utilize zero-inflated regression modelling to determine the predicted distribution of additions and deletions. In addition to standard statistical measures, we gauge the performance of this model by simulating a 2010 address canvassing operation using a specified coverage level. We also discuss future maintenance and updating of this model.
机译:为了实现2020年人口普查的战略目标,美国人口普查局必须对十年一次的人口普查的设计,实施和管理进行根本性的改变。变革必须以成功为基础,并应对以前的人口普查所面临的挑战。特别令人感兴趣的是衡量普查框架的持续质量。我们通过讨论用于主地址文件的一组统计模型来解决此问题,该模型将产生从地理级别到块级别的覆盖误差的估计。块中添加和删除的住房单元的分布分别用于表征不足量和过量量。使用的数据来自2010年的地址调查操作。如将显示的那样,这些分布高度偏斜,占很大比例的0计数。因此,我们利用零膨胀回归模型来确定添加和删除的预测分布。除了标准的统计量之外,我们还通过使用指定的覆盖级别模拟2010年的地址拉票操作来评估此模型的性能。我们还将讨论该模型的未来维护和更新。

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